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A GUIDEBOOK TO PARTICLE SIZE ANALYSIS - Horiba

A GUIDEBOOK TO. PARTICLE size . ANALYSIS . TABLE OF CONTENTS. 1 Why is PARTICLE size important? Which size to measure 3 Understanding and interpreting PARTICLE size distribution calculations Central values: mean, median, mode Distribution widths Technique dependence Laser diffraction Dynamic light scattering Image ANALYSIS 8 PARTICLE size result interpretation: number vs. volume distributions Transforming results 10 Setting PARTICLE size specifications Distribution basis Distribution points Including a mean value X axis Testing reproducibility Including the error Setting specifications for various ANALYSIS techniques PARTICLE size ANALYSIS Techniques 15 LA-960 laser diffraction technique The importance of optical model Building a state of the art laser diffraction analyzer 18 LA-350 laser diffraction technique Compact optical bench and circulation pump in one system 19 ViewSizer 3000 nanotracking ANALYSIS A Breakthrough in nanoparticle tracking ANALYSIS 20 SZ-100 dynamic light scattering technique Calculating PARTICLE size Zeta Potential Molecular weight 25 PSA300 and CAMSIZER P4 image ANALYSIS techniques Static image ANALYSIS Dynamic image

Performing a particle size analysis is the best way to answer the question: What size are those particles? Once the analysis is complete the user has

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Transcription of A GUIDEBOOK TO PARTICLE SIZE ANALYSIS - Horiba

1 A GUIDEBOOK TO. PARTICLE size . ANALYSIS . TABLE OF CONTENTS. 1 Why is PARTICLE size important? Which size to measure 3 Understanding and interpreting PARTICLE size distribution calculations Central values: mean, median, mode Distribution widths Technique dependence Laser diffraction Dynamic light scattering Image ANALYSIS 8 PARTICLE size result interpretation: number vs. volume distributions Transforming results 10 Setting PARTICLE size specifications Distribution basis Distribution points Including a mean value X axis Testing reproducibility Including the error Setting specifications for various ANALYSIS techniques PARTICLE size ANALYSIS Techniques 15 LA-960 laser diffraction technique The importance of optical model Building a state of the art laser diffraction analyzer 18 LA-350 laser diffraction technique Compact optical bench and circulation pump in one system 19 ViewSizer 3000 nanotracking ANALYSIS A Breakthrough in nanoparticle tracking ANALYSIS 20 SZ-100 dynamic light scattering technique Calculating PARTICLE size Zeta Potential Molecular weight 25 PSA300 and CAMSIZER P4 image ANALYSIS techniques Static image ANALYSIS Dynamic image

2 ANALYSIS 28 Dynamic range of the Horiba PARTICLE characterization systems 29 Selecting a PARTICLE size analyzer When to choose laser diffraction When to choose dynamic light scattering When to choose image ANALYSIS 31 References Why is PARTICLE size important? PARTICLE size influences many properties of particulate materials and is a valuable indicator of quality and performance. This is true for powders, PARTICLE size is critical within suspensions, emulsions, and aerosols. The size and shape of powders influences a vast number of industries. flow and compaction properties. Larger, more spherical particles will typically flow For example, it determines: more easily than smaller or high aspect ratio particles . Smaller particles dissolve appearance and gloss of paint more quickly and lead to higher suspension viscosities than larger ones.

3 Smaller flavor of cocoa powder droplet sizes and higher surface charge (zeta potential) will typically improve suspension and emulsion stability. Powder or droplets in the range of 2-5 m reflectivity of highway paint aerosolize better and will penetrate into lungs deeper than larger sizes. For these hydration rate & strength of cement and many other reasons it is important to measure and control the PARTICLE size properties of die filling powder distribution of many products. absorption rates of pharmaceuticals appearances of cosmetics Measurements in the laboratory are often made to support unit operations taking place in a process environment. The most obvious example is milling (or size reduction by another technology) where the goal of the operation is to reduce PARTICLE size to a desired specification.

4 Many other size reduction operations and technologies also require lab measurements to track changes in PARTICLE size including crushing, homogenization, emulsification, microfluidization, and others. Separation steps such as screening, filtering, cyclones, etc. may be monitored by measuring PARTICLE size before and after the process. PARTICLE size growth may be monitored during operations such as granulation or crystallization. Determining the PARTICLE size of powders requiring mixing is common since materials with similar and narrower distributions are less prone to segregation. There are also industry/application specific reasons why controlling and measuring PARTICLE size is important. In the paint and pigment industries PARTICLE size influences appearance properties including gloss and tinctorial strength.

5 PARTICLE size of the cocoa powder used in chocolate affects color and flavor. The size and shape of the glass beads used in highway paint impacts reflectivity. Cement PARTICLE size influences hydration rate & strength. The size and shape distribution of the metal particles impacts powder behavior during die filling, compaction, and sintering, and therefore influences the physical properties of the parts created. In the pharmaceutical industry the size of active ingredients influences critical characteristics including content uniformity, dissolution and absorption rates. Other industries where PARTICLE size plays an important role include nanotechnology, proteins, cosmetics, polymers, soils, abrasives, fertilizers, and many more. 1. WHICH size TO MEASURE? A spherical PARTICLE can be described using a single number the diameter.

6 Because every dimension is identical. As seen in Figure 1, non-spherical particles DIAMETER can be described using multiple length and width measures (horizontal and vertical projections are shown here). These descriptions provide greater accuracy, but also greater complexity. Thus, many techniques make the useful and convenient assumption that every PARTICLE is a sphere. The reported value is typically an equivalent spherical diameter. This is essentially taking the physical measured value VERTICAL. ( scattered light, settling rate) and determining the size of the sphere that could PROJECTION produce the data. Although this approach is simplistic and not perfectly accurate, the shapes of particles generated by most industrial processes are such that the spherical assumption does not cause serious problems.

7 Problems can arise, however, if the individual particles have a very large aspect ratio, such as fibers or needles. Shape factor causes disagreements when particles are measured with different PARTICLE size analyzers. Each measurement technique detects size through the use of its own physical principle. For example, a sieve will tend to emphasize the second smallest dimension because of the way particles must orient themselves to pass through the mesh opening. A sedimentometer measures the rate of fall of the PARTICLE through a viscous medium, with the other particles and/or the container HORIZONTAL. PROJECTION walls tending to slow their movement. Flaky or plate-like particles will orient to maximize drag while sedimenting, shifting the reported PARTICLE size in the smaller figure 1.

8 | SHAPE FACTOR direction. A light scattering device will average the various dimensions as the Many techniques make the particles flow randomly through the light beam, producing a distribution of sizes general assumption that every from the smallest to the largest dimensions. PARTICLE is a sphere and report the value of some equivalent The only techniques that can describe PARTICLE size using multiple values are diameter. Microscopy or automated image ANALYSIS are the microscopy or automated image ANALYSIS . An image ANALYSIS system could only techniques that can describe describe the non-spherical PARTICLE seen in Figure 1 using the longest and shortest PARTICLE size using multiple values diameters, perimeter, projected area, or again by equivalent spherical diameter. for particles with larger aspect When reporting a PARTICLE size distribution the most common format used even for ratios.

9 Image ANALYSIS systems is equivalent spherical diameter on the x axis and percent on the y axis. It is only for elongated or fibrous particles that the x axis is typically displayed as length rather than equivalent spherical diameter. 2. Understanding and interpreting PARTICLE size distribution calculations Performing a PARTICLE size ANALYSIS is the best way to answer the question: What size are those particles ? Once the ANALYSIS is complete the user has a variety of approaches for reporting the result. Some people prefer a single number answer what is the average size ? More experienced PARTICLE scientists cringe when they hear this question, knowing that a single number cannot describe the distribution of the sample. A better approach is to report both a central point of the distribution along with one or more values to describe the width of distribution.

10 Other approaches are also described in this document. CENTRAL VALUES: MEAN, MEDIAN, MODE. For symmetric distributions such as the one shown in Figure 2 all central values are equivalent: mean = median = mode. But what do these values represent? MEAN. Mean is a calculated value similar to the concept of average. The various mean calculations are defined in several standard documents ( ,2). There are multiple definitions for mean because the mean value is associated with the basis of the figure 2. | SYMMETRIC DISTRIBUTION. WHERE MEAN=MEDIAN=MODE. distribution calculation (number, surface, volume). See (ref. 3) for an explanation of number, surface, and volume distributions. Laser diffraction results are reported on a volume basis, so the volume mean can be used to define the central point although the median is more frequently used than the mean when using this technique.


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